Literature DB >> 32125737

CVSnet: A machine learning approach for automated central vein sign assessment in multiple sclerosis.

Pietro Maggi1,2, Mário João Fartaria3,4, João Jorge5, Francesco La Rosa4,6, Martina Absinta7, Pascal Sati7, Reto Meuli6, Renaud Du Pasquier1, Daniel S Reich7, Meritxell Bach Cuadra4,6,8, Cristina Granziera9,10, Jonas Richiardi3,6, Tobias Kober3,4.   

Abstract

The central vein sign (CVS) is an efficient imaging biomarker for multiple sclerosis (MS) diagnosis, but its application in clinical routine is limited by inter-rater variability and the expenditure of time associated with manual assessment. We describe a deep learning-based prototype for automated assessment of the CVS in white matter MS lesions using data from three different imaging centers. We retrospectively analyzed data from 3 T magnetic resonance images acquired on four scanners from two different vendors, including adults with MS (n = 42), MS mimics (n = 33, encompassing 12 distinct neurological diseases mimicking MS) and uncertain diagnosis (n = 5). Brain white matter lesions were manually segmented on FLAIR* images. Perivenular assessment was performed according to consensus guidelines and used as ground truth, yielding 539 CVS-positive (CVS+ ) and 448 CVS-negative (CVS- ) lesions. A 3D convolutional neural network ("CVSnet") was designed and trained on 47 datasets, keeping 33 for testing. FLAIR* lesion patches of CVS+ /CVS- lesions were used for training and validation (n = 375/298) and for testing (n = 164/150). Performance was evaluated lesion-wise and subject-wise and compared with a state-of-the-art vesselness filtering approach through McNemar's test. The proposed CVSnet approached human performance, with lesion-wise median balanced accuracy of 81%, and subject-wise balanced accuracy of 89% on the validation set, and 91% on the test set. The process of CVS assessment, in previously manually segmented lesions, was ~ 600-fold faster using the proposed CVSnet compared with human visual assessment (test set: 4 seconds vs. 40 minutes). On the validation and test sets, the lesion-wise performance outperformed the vesselness filter method (P < 0.001). The proposed deep learning prototype shows promising performance in differentiating MS from its mimics. Our approach was evaluated using data from different hospitals, enabling larger multicenter trials to evaluate the benefit of introducing the CVS marker into MS diagnostic criteria.
© 2020 John Wiley & Sons, Ltd.

Entities:  

Keywords:  Central vein sign; MS mimics; deep learning; multiple sclerosis

Mesh:

Year:  2020        PMID: 32125737      PMCID: PMC7754184          DOI: 10.1002/nbm.4283

Source DB:  PubMed          Journal:  NMR Biomed        ISSN: 0952-3480            Impact factor:   4.478


  26 in total

1.  The onset and progression of the lesion in multiple sclerosis.

Authors:  C W Adams
Journal:  J Neurol Sci       Date:  1975-06       Impact factor: 3.181

2.  The "central vein sign" in patients with diagnostic "red flags" for multiple sclerosis: A prospective multicenter 3T study.

Authors:  Pietro Maggi; Martina Absinta; Pascal Sati; Gaetano Perrotta; Luca Massacesi; Bernard Dachy; Caroline Pot; Reto Meuli; Daniel S Reich; Massimo Filippi; Renaud Du Pasquier; Marie Théaudin
Journal:  Mult Scler       Date:  2019-09-19       Impact factor: 6.312

Review 3.  Diagnosis of multiple sclerosis: 2017 revisions of the McDonald criteria.

Authors:  Alan J Thompson; Brenda L Banwell; Frederik Barkhof; William M Carroll; Timothy Coetzee; Giancarlo Comi; Jorge Correale; Franz Fazekas; Massimo Filippi; Mark S Freedman; Kazuo Fujihara; Steven L Galetta; Hans Peter Hartung; Ludwig Kappos; Fred D Lublin; Ruth Ann Marrie; Aaron E Miller; David H Miller; Xavier Montalban; Ellen M Mowry; Per Soelberg Sorensen; Mar Tintoré; Anthony L Traboulsee; Maria Trojano; Bernard M J Uitdehaag; Sandra Vukusic; Emmanuelle Waubant; Brian G Weinshenker; Stephen C Reingold; Jeffrey A Cohen
Journal:  Lancet Neurol       Date:  2017-12-21       Impact factor: 44.182

4.  Value of the central vein sign at 3T to differentiate MS from seropositive NMOSD.

Authors:  Rosa Cortese; Lise Magnollay; Carmen Tur; Khaled Abdel-Aziz; Anu Jacob; Floriana De Angelis; Marios C Yiannakas; Ferran Prados; Sebastien Ourselin; Tarek A Yousry; Frederik Barkhof; Olga Ciccarelli
Journal:  Neurology       Date:  2018-03-07       Impact factor: 9.910

5.  Diagnostic performance of central vein sign for multiple sclerosis with a simplified three-lesion algorithm.

Authors:  Andrew J Solomon; Richard Watts; Daniel Ontaneda; Martina Absinta; Pascal Sati; Daniel S Reich
Journal:  Mult Scler       Date:  2017-08-18       Impact factor: 6.312

6.  FLAIR*: a combined MR contrast technique for visualizing white matter lesions and parenchymal veins.

Authors:  Pascal Sati; Ilena C George; Colin D Shea; María I Gaitán; Daniel S Reich
Journal:  Radiology       Date:  2012-10-16       Impact factor: 11.105

Review 7.  Advanced MRI and staging of multiple sclerosis lesions.

Authors:  Martina Absinta; Pascal Sati; Daniel S Reich
Journal:  Nat Rev Neurol       Date:  2016-04-29       Impact factor: 42.937

8.  Central vein sign differentiates Multiple Sclerosis from central nervous system inflammatory vasculopathies.

Authors:  Pietro Maggi; Martina Absinta; Matteo Grammatico; Luisa Vuolo; Giacomo Emmi; Giovanna Carlucci; Gregorio Spagni; Alessandro Barilaro; Anna Maria Repice; Lorenzo Emmi; Domenico Prisco; Vittorio Martinelli; Roberta Scotti; Niloufar Sadeghi; Gaetano Perrotta; Pascal Sati; Bernard Dachy; Daniel S Reich; Massimo Filippi; Luca Massacesi
Journal:  Ann Neurol       Date:  2018-02-15       Impact factor: 10.422

9.  Predicting conversion from clinically isolated syndrome to multiple sclerosis-An imaging-based machine learning approach.

Authors:  Haike Zhang; Esther Alberts; Viola Pongratz; Mark Mühlau; Claus Zimmer; Benedikt Wiestler; Paul Eichinger
Journal:  Neuroimage Clin       Date:  2018-11-05       Impact factor: 4.881

10.  Automated detection of white matter and cortical lesions in early stages of multiple sclerosis.

Authors:  Mário João Fartaria; Guillaume Bonnier; Alexis Roche; Tobias Kober; Reto Meuli; David Rotzinger; Richard Frackowiak; Myriam Schluep; Renaud Du Pasquier; Jean-Philippe Thiran; Gunnar Krueger; Meritxell Bach Cuadra; Cristina Granziera
Journal:  J Magn Reson Imaging       Date:  2015-11-25       Impact factor: 4.813

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  5 in total

1.  Lesion size and shape in central vein sign assessment for multiple sclerosis diagnosis: An in vivo and postmortem MRI study.

Authors:  Omar Al-Louzi; Sargis Manukyan; Maxime Donadieu; Martina Absinta; Vijay Letchuman; Brent Calabresi; Parth Desai; Erin S Beck; Snehashis Roy; Joan Ohayon; Dzung L Pham; Anish Thomas; Steven Jacobson; Irene Cortese; Pavan K Auluck; Govind Nair; Pascal Sati; Daniel S Reich
Journal:  Mult Scler       Date:  2022-06-08       Impact factor: 5.855

Review 2.  Machine Learning Approaches in Study of Multiple Sclerosis Disease Through Magnetic Resonance Images.

Authors:  Faezeh Moazami; Alain Lefevre-Utile; Costas Papaloukas; Vassili Soumelis
Journal:  Front Immunol       Date:  2021-08-11       Impact factor: 7.561

3.  Multiple sclerosis cortical lesion detection with deep learning at ultra-high-field MRI.

Authors:  Francesco La Rosa; Erin S Beck; Josefina Maranzano; Ramona-Alexandra Todea; Peter van Gelderen; Jacco A de Zwart; Nicholas J Luciano; Jeff H Duyn; Jean-Philippe Thiran; Cristina Granziera; Daniel S Reich; Pascal Sati; Meritxell Bach Cuadra
Journal:  NMR Biomed       Date:  2022-03-31       Impact factor: 4.478

4.  RimNet: A deep 3D multimodal MRI architecture for paramagnetic rim lesion assessment in multiple sclerosis.

Authors:  Germán Barquero; Francesco La Rosa; Hamza Kebiri; Po-Jui Lu; Reza Rahmanzadeh; Matthias Weigel; Mário João Fartaria; Tobias Kober; Marie Théaudin; Renaud Du Pasquier; Pascal Sati; Daniel S Reich; Martina Absinta; Cristina Granziera; Pietro Maggi; Meritxell Bach Cuadra
Journal:  Neuroimage Clin       Date:  2020-09-04       Impact factor: 4.881

Review 5.  Opportunities for Understanding MS Mechanisms and Progression With MRI Using Large-Scale Data Sharing and Artificial Intelligence.

Authors:  Hugo Vrenken; Mark Jenkinson; Dzung L Pham; Charles R G Guttmann; Deborah Pareto; Michel Paardekooper; Alexandra de Sitter; Maria A Rocca; Viktor Wottschel; M Jorge Cardoso; Frederik Barkhof
Journal:  Neurology       Date:  2021-10-04       Impact factor: 9.910

  5 in total

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